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Udemy

GenAI and Cybersecurity – Frameworks and Best Practices

via Udemy

Overview

Driving Enterprise GenAI Adoption: Tools, Frameworks, and Real-World Case Studies from Industry Leaders

What you'll learn:
  • Master the foundational principles and best practices for integrating Generative AI in cybersecurity.
  • Become aware about AI, ML, and deep learning, focusing on their applications in various industries, including a case study on Tesla Autopilot.
  • Study the intersection of AI/ML and cybersecurity, understanding ethical considerations and potential risks with examples from real-world scenarios.
  • Explore the latest trends as per industry reports like those from Gartner.
  • Delve into typical cloud-based and AI-specific cybersecurity architectures, learning how they differ and why they're essential.
  • Develop strategies for managing AI data privacy, including data quality, governance, and lifecycle management.
  • Learn about AI risk management frameworks like NIST AI RMF, and explore case studies on navigating AI risks.
  • Understand key AI controls and policies, including the CIA Triad, OWASP AI vulnerabilities, and AI governance frameworks.
  • Gain knowledge about auditing AI systems, understanding components of compliance, and readiness comparisons.
  • Explore various AI regulatory frameworks, including the EU AI Act, GDPR, and ethical AI frameworks by OECD.
  • Understand the security implications of Generative AI, exploring defenses, future challenges, and opportunities.
  • Learn about innovative GenAI solutions and opportunities, including custom LLM implementations and industry-specific applications.
  • Understand how AI can be used to enhance governance practices and develop frameworks for low-risk AI adoption.
  • Study key controversies and ethical issues in AI, as outlined by UNESCO and other bodies, to inform responsible AI practices.

Welcome to GenAI & Cybersecurity – Frameworks and Best Practices for Responsible AI Adoption

Generative AI is transforming how products are built, decisions are made, and businesses operate. This course is designed for practitioners who want to move beyond hype and understand how to adopt GenAI responsibly, securely, and meaningfully.

AI can amplify productivity, creativity, and automation but only when grounded in data, domain understanding, guardrails, and governance. This course focuses on that reality.

What This Course Is (and Isn’t)

Bad AI use cases

  • AI suggesting layoffs

  • AI replacing human judgment in sales or hiring

  • Emotion detection without context or ethics

Responsible AI use cases

  • Knowledge assistants for FAQs and decision support

  • AI-assisted writing and summarization

  • Automated information processing (OCR, multimodal), with humans in control

Responsible AI isn’t about banning technology, it’s about using it with intent, limits, and accountability.

What You’ll Learn

By the end of this course, you’ll understand:

  • Core concepts: AI, ML, DL, GenAI

  • Cybersecurity risks in AI/ML systems

  • AI ethics, privacy, and data governance

  • AI risk & threat management using NIST AI RMF

  • AI controls, audits, compliance, and regulations (EU AI Act, GDPR, OECD)

  • Generative AI & LLM security: risks, biases, defenses

  • Real-world case studies across industries

  • Practical frameworks for low-risk, responsible AI adoption

How This Course Helps You

  • Build an AI lens to map your domain and data

  • Ask better AI solution questions — even without full technical depth

  • Identify where to focus: GenAI PM · GenAI Development · Fine-tuning · Agents · Text-to-SQL · Vision · Domain-specific use cases

  • Distinguish hands-on expertise vs opinions vs hype

  • Evaluate AI systems using benchmarks, guardrails, and evidence

Support & Mentorship

At any point during the course, you’re welcome to reach out for 1-on-1 discussions, project ideation, reviews, or mentoring.

Not recommended for beginners.
This course won’t make you an expert overnight but it will help you ask better, use-case-driven questions and evaluate AI systems with clarity and responsibility.

Before You Enroll

This course is for practitioners who care about thoughtful, responsible GenAI adoption. There’s no single “right” answer, what matters is your approach, perspective, and willingness to explore trade-offs. If that resonates with you you’ll feel at home here.

You’ll Get Lifetime Access To

  • Comprehensive video lessons

  • Real-world case studies

  • Practical exercises and projects

  • Up-to-date industry insights

Enroll today and learn how to build GenAI systems that are secure, ethical, and grounded in reality.

Happy learning.

Syllabus

  • Strategic AI Foundations for Leaders
  • AI Risk Management for Product Teams
  • GenAI: Strategic Implementation Guide
  • Enterprise AI Architecture & Security
  • GenAI Model Security and Challenges
  • Practical AI Controls for Business
  • Data Strategy & Privacy Management
  • Privacy Strategy for AI Products
  • AI Risk Management & Threat Management
  • AI Governance - AI Frameworks & Policies
  • AI Audit & Compliance Management
  • AI Laws & Regulations
  • GenAI & LLM Security
  • GenAI Playbook - Models, Risks, Adoption Strategies and Recommendations
  • GenAI Success Stories & Lessons
  • GenAI Audit, Security Case Studies, Tools, Solutions and Opportunities
  • Leadership Guide to AI Transformation

Taught by

Talent loom, Sivaram A and Gayathri B R

Reviews

4 rating at Udemy based on 194 ratings

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